Parkinson’s Disease Detection from Handwriting Using VGG-16 and Random Forest
DOI:
https://doi.org/10.30871/jaic.v10i2.12428Keywords:
Early Detection, Parkinson's Disease, Random Forest, VGG-16Abstract
Parkinson’s disease is one of the most common neurodegenerative diseases in Indonesia and remains incurable. However, early recognition of Parkinson’s disease makes it possible for timely intervention to be conducted. Unfortunately, Parkinson’s disease detection process can sometimes take a long time. This study proposes a system for early Parkinson’s disease using offline handwriting images and machine learning techniques. The system employs VGG-16 for feature extraction and Random Forest classifier for prediction to recognize early signs of Parkinson’s disease through three handwriting tasks, namely spirals, meander and circle using publicly available NewHandPD dataset containing 594 samples across all tasks. The model will be trained using original data as well as images processed with three preprocessing techniques, namely grayscale, grayscale with CLAHE and grayscale with CLAHE and Otsu thresholding. In the final testing phase using a held-out test set, the model trained on the original data achieved the best performance, achieving average accuracy of 94%. The best performing model will be hosted in a cloud-based environment and accessed by a developed software application through an API. A questionnaire was conducted using the USE Questionnaire, resulting in average score of 90,97%. Indicating a high level of user satisfaction for the application developed in this study.
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